A Continuous-Time LPV Model for Battery State-of-health Estimation Using Real Vehicle Data

M. Andersson, M. Johansson, V. Klass
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引用次数: 3

Abstract

One approach for State-of-health estimation onboard electric vehicles is to train a data-driven virtual battery on operational data and use this model, rather than the actual battery, for performance tests. A temperature-dependent continuous-time output-error (OE) model is proposed as virtual battery and identified and validated on real operational data from electric buses. The proposed model is compared to discrete-time and parameter-invariant models and shows better performance on all data sets. In addition, the OE model structure is shown to be superior to a conventional Auto Regressive eXogenous (ARX) model for the purpose of modeling the battery voltage response. Finally, challenges regarding vehicle log data are identified and improvements to the model are suggested in order to capture observed un-modeled phenomena.
基于真实车辆数据的电池健康状态估计连续时间LPV模型
电动汽车健康状况评估的一种方法是根据运行数据训练数据驱动的虚拟电池,并使用该模型(而不是实际电池)进行性能测试。提出了一种基于温度的连续时间输出误差模型作为虚拟电池,并在电动客车的实际运行数据上进行了识别和验证。与离散时间模型和参数不变模型相比,该模型在所有数据集上都表现出更好的性能。此外,OE模型结构在模拟电池电压响应方面优于传统的Auto Regressive eXogenous (ARX)模型。最后,指出了车辆日志数据方面的挑战,并提出了改进模型的建议,以便捕获观测到的未建模现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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